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Recurrence Plot-Based Approach to the Analysis of IP-Network Traffic in Terms of Assessing Nonstationary Transitions Over Time

机译:基于递归图的IP网络流量分析方法,可评估随时间推移的非平稳过渡

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摘要

This paper presents a recurrence plot scheme approach to the analysis of nonstationary transition patterns of IP-network traffic. In performing a quantitative assessment of dynamical transition patterns of IP-network traffic, we used the values of determinism (DET) defined by the recurrence quantification analysis (RQA). Also, in evaluating fractal-related properties of IP-network traffic, we employed the detrended fluctuation analysis (DFA), which is applicable to the analysis of long-range dependence (LRD) in nonstationary time-series signals. Furthermore, to obtain a comprehensive view of network traffic conditions, we used a self-organizing map, which provides a way to map high-dimensional data onto a low-dimensional domain. When applying this method to traffic analysis, we performed two kinds of traffic measurement in Tokyo, Japan, and derived values of DET and the LRD-based scaling parameter$alpha$of IP-network traffic. Then, we found that the characteristic with respect to DET and self-similarity seen in the measured traffic fluctuated over time, with different time variation patterns for two measurements. In training the self-organizing map, we used three parameters: average throughput, variation ratio of DET, and$alpha$value. As a result, we visually confirmed that the traffic data could be projected onto the map in accordance with traffic properties, resulting in a combined depiction of the effects of the DET and network utilization rates on the time-variations of LRD.
机译:本文提出了一种递归图方案方法来分析IP网络流量的非平稳过渡模式。在对IP网络流量的动态过渡模式进行定量评估时,我们使用了由循环量化分析(RQA)定义的确定性(DET)值。另外,在评估IP网络流量的分形相关属性时,我们采用了去趋势波动分析(DFA),适用于分析非平稳时间序列信号中的长期相关性(LRD)。此外,为了获得网络流量状况的全面视图,我们使用了自组织映射,该映射提供了将高维数据映射到低维域的方法。将这种方法应用于流量分析时,我们在日本东京进行了两种流量测量,并得出了DET值和基于LRD的IP网络流量的缩放参数$ alpha $。然后,我们发现在测得的流量中,关于DET的特性和自相似性随时间波动,两次测量的时间变化模式不同。在训练自组织图时,我们使用了三个参数:平均吞吐量,DET的变化率和$ alpha $ value。结果,我们在视觉上确认了可以根据交通属性将交通数据投影到地图上,从而得到DET和网络利用率对LRD时变的综合描述。

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